基于填充函数法的小波神经网络优化改进方法

Huang Feng-wen, Jiang Ai-ping
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引用次数: 3

摘要

神经网络的BP算法有时不能得到全局最小值[2-5],而且有可能产生许多局部最小值,从而无法找到最优解。为了解决这一问题,提出了一种快速计算数值的参数填充函数法[1]。将其与改进的BFGS (Broyden-Davidon-Fletcher- Powell)算法相结合,得到了一种新的小波神经网络全局优化算法。该算法通过BFGS先得到第一个局部最小值,然后用填充函数法求得另一个更小的局部最小值,重复此过程,优化网络结构和权值,直到找到全局最小值。将该方法用于上证指数的训练,得到了较好的网络性能。
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An improved method of wavelet neural network optimization based on filled function method
BP algorithm of neural network don't obtain global minimum sometimes[2–5], furthermore, it is possible to create many local minimum so that the optimum solution can't be found. In order to solve this question, one parameter filled function method[l] is presented which can calculate value fast. We combine it with modified BFGS (Broyden-Davidon-Fletcher- Powell) to get a new algorithm for global optimization of wavelet neural network. The algorithm obtain the first local minimum by BFGS, then filled function method is used to obtain another smaller local minimum, this process is repeated for some times so that the network structure and weight value are optimized till global minimum is found. This method is used to train Shanghai stock index, then better network performance is obtained.
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